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Update metadata for VTSanghani-PRIME
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model-metadata/VTSanghani-PRIME.yml

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@@ -2,31 +2,29 @@ team_name: "VTSanghani"
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team_abbr: "VTSanghani"
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model_name: "PRIME"
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model_abbr: "PRIME"
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model_version: "1.0"
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model_version: "2.0"
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model_contributors: [
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{
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"name": "Yiqi Su",
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"affiliation": "Virginia Tech",
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"email": "yiqisu@vt.edu"
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},
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{
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"name": "Patrick Butler",
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"affiliation": "Virginia Tech",
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"email": "pabutler@vt.edu"
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"email": "yiqisu@vt.edu",
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"orcid": "0009-0008-7276-2772"
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},
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{
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"name": "Naren Ramakrishnan",
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"affiliation": "Virginia Tech",
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"email": "naren@cs.vt.edu"
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"email": "naren@cs.vt.edu",
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"orcid": "0000-0002-1821-9743"
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},
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]
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website_url: "https://sanghani.cs.vt.edu/"
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license: "CC-BY-4.0"
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team_funding: "NSF"
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team_funding: "NSF awards CCF-1918770, DBI-2412389"
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designated_model: true
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methods: "Integration of model-based and time series forecasting methods."
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data_inputs: "National and jurisdictional weekly incident influenza like illness (ILI) case counts, flu vaccination coverage, illness activity, hospitalization admissions, mortality data, and state informtion."
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methods_long: "This ensemble forecasts US national- and state-level influenza hospitalizations. Included models focus
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on novel deep learning techniques"
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data_inputs: "Jurisdiction- and city-level weekly incident influenza like illness (ILI) case counts and hospitalization admissions."
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methods_long: "Develop deep learning methods for short-term forecasting of U.S. jurisdiction- and city-level percentages of
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emergency department (ED) visits attributable to influenza or influenza-like illness (ILI),
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leveraging machine learning models designed to capture complex temporal and spatial dependencies."
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ensemble_of_models: false
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ensemble_of_hub_models: false

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